volume 79 pages 102428

Deep learning methods for automatic evaluation of delayed enhancement-MRI. The results of the EMIDEC challenge

Alain Lalande 1, 2
Zhihao Chen 3
Thibaut Pommier 4
Abdul Qayyum 1
M. Salomon 3
Dominique Ginhac 1
Youssef Skandarani 1
Arnaud Boucher 1
Khawla Brahim 1, 5, 6
Marleen de Bruijne 7, 8
Robin Camarasa 7
Teresa M. Correia 9, 10
Xue Feng 11
Kibrom B. Girum 1
Anja Hennemuth 12, 13, 14
Markus Huellebrand 12, 13
Raabid Hussain 1
Matthias Ivantsits 12
Jun Ma 15
Publication typeJournal Article
Publication date2022-07-01
scimago Q1
wos Q1
SJR3.289
CiteScore26.6
Impact factor11.8
ISSN13618415, 13618423
Computer Graphics and Computer-Aided Design
Radiological and Ultrasound Technology
Computer Vision and Pattern Recognition
Health Informatics
Radiology, Nuclear Medicine and imaging
Abstract
A key factor for assessing the state of the heart after myocardial infarction (MI) is to measure whether the myocardium segment is viable after reperfusion or revascularization therapy. Delayed enhancement-MRI or DE-MRI, which is performed 10 min after injection of the contrast agent, provides high contrast between viable and nonviable myocardium and is therefore a method of choice to evaluate the extent of MI. To automatically assess myocardial status, the results of the EMIDEC challenge that focused on this task are presented in this paper. The challenge's main objectives were twofold. First, to evaluate if deep learning methods can distinguish between non-infarct and pathological exams, i.e. exams with or without hyperenhanced area. Second, to automatically calculate the extent of myocardial infarction. The publicly available database consists of 150 exams divided into 50 cases without any hyperenhanced area after injection of a contrast agent and 100 cases with myocardial infarction (and then with a hyperenhanced area on DE-MRI), whatever their inclusion in the cardiac emergency department. Along with MRI, clinical characteristics are also provided. The obtained results issued from several works show that the automatic classification of an exam is a reachable task (the best method providing an accuracy of 0.92), and the automatic segmentation of the myocardium is possible. However, the segmentation of the diseased area needs to be improved, mainly due to the small size of these areas and the lack of contrast with the surrounding structures.
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GOST Copy
Lalande A. et al. Deep learning methods for automatic evaluation of delayed enhancement-MRI. The results of the EMIDEC challenge // Medical Image Analysis. 2022. Vol. 79. p. 102428.
GOST all authors (up to 50) Copy
Lalande A., Chen Z., Pommier T., Qayyum A., Salomon M., Ginhac D., Skandarani Y., Boucher A., Brahim K., de Bruijne M., Camarasa R., Correia T. M., Feng X., Girum K. B., Hennemuth A., Huellebrand M., Hussain R., Ivantsits M., Ma J. Deep learning methods for automatic evaluation of delayed enhancement-MRI. The results of the EMIDEC challenge // Medical Image Analysis. 2022. Vol. 79. p. 102428.
RIS |
Cite this
RIS Copy
TY - JOUR
DO - 10.1016/j.media.2022.102428
UR - https://doi.org/10.1016/j.media.2022.102428
TI - Deep learning methods for automatic evaluation of delayed enhancement-MRI. The results of the EMIDEC challenge
T2 - Medical Image Analysis
AU - Lalande, Alain
AU - Chen, Zhihao
AU - Pommier, Thibaut
AU - Qayyum, Abdul
AU - Salomon, M.
AU - Ginhac, Dominique
AU - Skandarani, Youssef
AU - Boucher, Arnaud
AU - Brahim, Khawla
AU - de Bruijne, Marleen
AU - Camarasa, Robin
AU - Correia, Teresa M.
AU - Feng, Xue
AU - Girum, Kibrom B.
AU - Hennemuth, Anja
AU - Huellebrand, Markus
AU - Hussain, Raabid
AU - Ivantsits, Matthias
AU - Ma, Jun
PY - 2022
DA - 2022/07/01
PB - Elsevier
SP - 102428
VL - 79
PMID - 35500498
SN - 1361-8415
SN - 1361-8423
ER -
BibTex
Cite this
BibTex (up to 50 authors) Copy
@article{2022_Lalande,
author = {Alain Lalande and Zhihao Chen and Thibaut Pommier and Abdul Qayyum and M. Salomon and Dominique Ginhac and Youssef Skandarani and Arnaud Boucher and Khawla Brahim and Marleen de Bruijne and Robin Camarasa and Teresa M. Correia and Xue Feng and Kibrom B. Girum and Anja Hennemuth and Markus Huellebrand and Raabid Hussain and Matthias Ivantsits and Jun Ma},
title = {Deep learning methods for automatic evaluation of delayed enhancement-MRI. The results of the EMIDEC challenge},
journal = {Medical Image Analysis},
year = {2022},
volume = {79},
publisher = {Elsevier},
month = {jul},
url = {https://doi.org/10.1016/j.media.2022.102428},
pages = {102428},
doi = {10.1016/j.media.2022.102428}
}